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Multi-View ML Object Tracking With Online Learning on Riemannian Manifolds by Combining Geometric Constraints

机译:结合几何约束对黎曼流形进行在线学习的多视图ML对象跟踪

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This paper addresses issues in object tracking with occlusion scenarios, where multiple uncalibrated cameras with overlapping fields of view are exploited. We propose a novel method where tracking is first done independently in each individual view and then tracking results are mapped from different views to improve the tracking jointly. The proposed tracker uses the assumptions that objects are visible in at least one view and move uprightly on a common planar ground that may induce a homography relation between views. A method for online learning of object appearances on Riemannian manifolds is also introduced. The main novelties of the paper include: 1) define a similarity measure, based on geodesics between a candidate object and a set of mapped references from multiple views on a Riemannian manifold; 2) propose multi-view maximum likelihood estimation of object bounding box parameters, based on Gaussian-distributed geodesics on the manifold; 3) introduce online learning of object appearances on the manifold, taking into account of possible occlusions; 4) utilize projective transformations for objects between views, where parameters are estimated from warped vertical axis by combining planar homography, epipolar geometry, and vertical vanishing point; 5) embed single-view trackers in a three-layer multi-view tracking scheme. Experiments have been conducted on videos from multiple uncalibrated cameras, where objects contain long-term partial/full occlusions, or frequent intersections. Comparisons have been made with three existing methods, where the performance is evaluated both qualitatively and quantitatively. Results have shown the effectiveness of the proposed method in terms of robustness against tracking drift caused by occlusions.
机译:本文解决了遮挡场景下的对象跟踪问题,在这种场景中,利用了多个具有重叠视场的未校准相机。我们提出了一种新颖的方法,该方法首先在每个单独的视图中独立进行跟踪,然后从不同的视图映射跟踪结果以共同改善跟踪。所提出的跟踪器使用以下假设:对象在至少一个视图中可见,并且在可能引起视图之间的单应性关系的公共平面地面上垂直移动。还介绍了一种在线学习黎曼流形上的对象外观的方法。本文的主要新颖之处包括:1)根据候选对象与一组黎曼流形上多个视图的映射参考之间的测地线定义相似性度量; 2)基于流形上的高斯分布测地线,提出目标包围盒参数的多视图最大似然估计; 3)考虑到可能的遮挡,在线学习流形上物体的外观; 4)对视图之间的对象使用投影变换,其中通过结合平面单应性,对极几何和垂直消失点从扭曲的垂直轴估计参数; 5)将单视图跟踪器嵌入三层多视图跟踪方案中。已对来自多个未经校准的摄像机的视频进行了实验,其中对象包含长期的部分/全部遮挡或频繁的相交。已与三种现有方法进行了比较,其中对性能进行了定性和定量评估。结果表明,在针对由遮挡引起的跟踪漂移的鲁棒性方面,该方法是有效的。

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